Bayesian networks are directed acyclic graphs representing independence relationships among a set of random variables. A random variable can be regarded as a set of exhaustive and mutually exclusive propositions. We argue that there are several drawbacks resulting from the propositional nature and acyclic structure of Bayesian networks. To remedy these shortcomings, we propose a probabilistic network where nodes represent unary predicates and which may contain directed cycles. The proposed representation allows us to represent domain knowledge in a single static network even though we cannot determine the instantiations of the predicates before hand. The ability to deal with cycles also enables us to handle cyclic causal tendencies and to r...
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
Dependency graphs are models for representing probabilistic inter-dependencies among related concept...
International audienceWe examine Bayesian cyclic networks, here defined as complete directed graphs ...
Probabilistic models based on directed acyclic graphs (DAGs) have a long and rich tradition, which b...
The article is devoted to some critical problems of using Bayesian networks for solving practical pr...
Includes bibliographical references (page 48).San Diego State University copy: the accompanying CD-R...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
AbstractTo build a Bayesian network (BN), one may directly construct a directed acyclic graph (DAG) ...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
Bayesian networks: an overview A Bayesian network (BN) [6, 7] is a combination of: • a directed acyc...
Bayesian Belief Networks are a powerful tool for combining different knowledge sources with various ...
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
Dependency graphs are models for representing probabilistic inter-dependencies among related concept...
International audienceWe examine Bayesian cyclic networks, here defined as complete directed graphs ...
Probabilistic models based on directed acyclic graphs (DAGs) have a long and rich tradition, which b...
The article is devoted to some critical problems of using Bayesian networks for solving practical pr...
Includes bibliographical references (page 48).San Diego State University copy: the accompanying CD-R...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
AbstractTo build a Bayesian network (BN), one may directly construct a directed acyclic graph (DAG) ...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
Bayesian networks: an overview A Bayesian network (BN) [6, 7] is a combination of: • a directed acyc...
Bayesian Belief Networks are a powerful tool for combining different knowledge sources with various ...
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
Dependency graphs are models for representing probabilistic inter-dependencies among related concept...